In order to make full use of structural information of grayscale images and reduce adverse impact of illumination variation for person re-identification (ReID), an effective data augmentation method is proposed in this paper, which includes Random Grayscale Transformation, Random Grayscale Patch Replacement and their combination. It is discovered that structural information has a significant effect on the ReID model performance, and it is very important complementary to RGB images ReID. During ReID model training, on the one hand, we randomly selected a rectangular area in the RGB image and replace its color with the same rectangular area grayscale in corresponding grayscale image, thus we generate a training image with different grayscale areas; On the other hand, we convert an image into a grayscale image. These two methods will reduce the risk of overfitting the model due to illumination variations and make the model more robust to cross-camera. The experimental results show that our method achieves a performance improvement of up to 3.3%, achieving the highest retrieval accuracy currently on multiple datasets.
翻译:为了充分利用灰度图像的结构信息,并减少个人再识别(ReID)的照明变异的不利影响,本文件建议了一种有效的数据增强方法,其中包括随机灰度变换、随机灰度补补丁及其组合。发现结构信息对 ReID 模型性能有重大影响,并且对RGB 图像再识别非常重要。在ReID 模型培训期间,一方面,我们随机选择了RGB 图像中的矩形区域,并在相应的灰度图像中以相同的矩形区域灰度替换其颜色,因此我们产生了不同灰度区域的培训图像;另一方面,我们将图像转换为灰度图像。这两种方法将减少由于照明变异而使模型适应过度的风险,并使模型对交叉摄像更有活力。实验结果显示,我们的方法取得了高达3.3%的性能改进,在多个数据集中实现了目前最高的检索精确度。